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Autores principales: Yang, Yuxiao, Sheng, Hualian, Cai, Sijia, Lin, Jing, Wang, Jiahao, Deng, Bing, Lu, Junzhe, Wang, Haoqian, Ye, Jieping
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2512.18814
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author Yang, Yuxiao
Sheng, Hualian
Cai, Sijia
Lin, Jing
Wang, Jiahao
Deng, Bing
Lu, Junzhe
Wang, Haoqian
Ye, Jieping
author_facet Yang, Yuxiao
Sheng, Hualian
Cai, Sijia
Lin, Jing
Wang, Jiahao
Deng, Bing
Lu, Junzhe
Wang, Haoqian
Ye, Jieping
contents Video generation models have advanced significantly, yet they still struggle to synthesize complex human movements due to the high degrees of freedom in human articulation. This limitation stems from the intrinsic constraints of pixel-only training objectives, which inherently bias models toward appearance fidelity at the expense of learning underlying kinematic principles. To address this, we introduce EchoMotion, a framework designed to model the joint distribution of appearance and human motion, thereby improving the quality of complex human action video generation. EchoMotion extends the DiT (Diffusion Transformer) framework with a dual-branch architecture that jointly processes tokens concatenated from different modalities. Furthermore, we propose MVS-RoPE (Motion-Video Syncronized RoPE), which offers unified 3D positional encoding for both video and motion tokens. By providing a synchronized coordinate system for the dual-modal latent sequence, MVS-RoPE establishes an inductive bias that fosters temporal alignment between the two modalities. We also propose a Motion-Video Two-Stage Training Strategy. This strategy enables the model to perform both the joint generation of complex human action videos and their corresponding motion sequences, as well as versatile cross-modal conditional generation tasks. To facilitate the training of a model with these capabilities, we construct HuMoVe, a large-scale dataset of approximately 80,000 high-quality, human-centric video-motion pairs. Our findings reveal that explicitly representing human motion is complementary to appearance, significantly boosting the coherence and plausibility of human-centric video generation.
format Preprint
id arxiv_https___arxiv_org_abs_2512_18814
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle EchoMotion: Unified Human Video and Motion Generation via Dual-Modality Diffusion Transformer
Yang, Yuxiao
Sheng, Hualian
Cai, Sijia
Lin, Jing
Wang, Jiahao
Deng, Bing
Lu, Junzhe
Wang, Haoqian
Ye, Jieping
Computer Vision and Pattern Recognition
Video generation models have advanced significantly, yet they still struggle to synthesize complex human movements due to the high degrees of freedom in human articulation. This limitation stems from the intrinsic constraints of pixel-only training objectives, which inherently bias models toward appearance fidelity at the expense of learning underlying kinematic principles. To address this, we introduce EchoMotion, a framework designed to model the joint distribution of appearance and human motion, thereby improving the quality of complex human action video generation. EchoMotion extends the DiT (Diffusion Transformer) framework with a dual-branch architecture that jointly processes tokens concatenated from different modalities. Furthermore, we propose MVS-RoPE (Motion-Video Syncronized RoPE), which offers unified 3D positional encoding for both video and motion tokens. By providing a synchronized coordinate system for the dual-modal latent sequence, MVS-RoPE establishes an inductive bias that fosters temporal alignment between the two modalities. We also propose a Motion-Video Two-Stage Training Strategy. This strategy enables the model to perform both the joint generation of complex human action videos and their corresponding motion sequences, as well as versatile cross-modal conditional generation tasks. To facilitate the training of a model with these capabilities, we construct HuMoVe, a large-scale dataset of approximately 80,000 high-quality, human-centric video-motion pairs. Our findings reveal that explicitly representing human motion is complementary to appearance, significantly boosting the coherence and plausibility of human-centric video generation.
title EchoMotion: Unified Human Video and Motion Generation via Dual-Modality Diffusion Transformer
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.18814